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State estimation of stochastic non-linear hybrid dynamic system using an interacting multiple model algorithm

机译:相互作用多模型算法的随机非线性混合动力系统状态估计

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In this work, state estimation schemes for non-linear hybrid dynamic systems subjected to stochastic state disturbances and random errors in measurements using interacting multiple-model (IMM) algorithms are formulated. In order to compute both discrete modes and continuous state estimates of a hybrid dynamic system either an IMM extended Kalman filter (IMM-EKF) or an IMM based derivative-free Kalman filters is proposed in this study. The efficacy of the proposed IMM based state estimation schemes is demonstrated by conducting Monte-Carlo simulation studies on the two-tank hybrid system and switched non-isothermal continuous stirred tank reactor system. Extensive simulation studies reveal that the proposed IMM based state estimation schemes are able to generate fairly accurate continuous state estimates and discrete modes. In the presence and absence of sensor bias, the simulation studies reveal that the proposed IMM unscented Kalman filter (IMM-UKF) based simultaneous state and parameter estimation scheme outperforms multiple-model UKF (MM-UKF) based simultaneous state and parameter estimation scheme. (C) 2015 ISA. Published by Elsevier Ltd. All rights reserved.
机译:在这项工作中,制定了使用混合多模型(IMM)算法的非线性混合动力系统在随机状态扰动和测量中随机误差的状态估计方案。为了计算混合动力系统的离散模式和连续状态估计,本研究提出了IMM扩展卡尔曼滤波器(IMM-EKF)或基于IMM的无导数卡尔曼滤波器。通过对两罐混合系统和切换式非等温连续搅拌釜反应器系统进行蒙特卡洛模拟研究,证明了所提出的基于IMM的状态估计方案的有效性。大量的仿真研究表明,所提出的基于IMM的状态估计方案能够生成相当准确的连续状态估计和离散模式。在存在和不存在传感器偏差的情况下,仿真研究表明,基于IMM无味卡尔曼滤波器(IMM-UKF)的同时状态和参数估计方案优于基于多模型UKF(MM-UKF)的同时状态和参数估计方案。 (C)2015 ISA。由Elsevier Ltd.出版。保留所有权利。

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